对于随机局部搜索,邻域大小比温度更重要

H. Mühlenbein, Jörg Zimmermann
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引用次数: 14

摘要

利用马尔可夫链分析研究了高维和低维离散空间中的随机局部搜索问题。在n维空间B/sup中,考虑一个称为Jump的函数。分析表明,使用大邻域且不接受最差点的算法比任何接受一定概率最差点的局部搜索算法的性能要好得多。我们还研究了B/sup /空间中具有许多局部最优的函数。我们比较了使用大邻域的随机局部搜索和使用依赖于马尔可夫过程状态的最优温度调度的局部搜索。
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Size of neighborhood more important than temperature for stochastic local search
We investigate stochastic local search by Markov chain analysis in a high and a low dimensional discrete space. In the n-dimensional space B/sup n/ a function called Jump is considered. The analysis shows that an algorithm using a large neighborhood and never accepting worse points performs much better than any local search algorithm accepting worse points with a certain probability. We also investigate functions in the space B/sup n/ with many local optima. We compare stochastic local search using large neighborhoods with a local search using optimal temperature schedules which depend on the state of the Markov process.
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